Superconvergence of Kernel-Based Interpolation
Robert Schaback

TL;DR
This paper investigates superconvergence phenomena in kernel-based interpolation, providing a unified theoretical framework that explains interior superconvergence under smoothness conditions and boundary effects, supported by numerical examples.
Contribution
It generalizes previous superconvergence results using an abstract theory, clarifies conditions on smoothness and localization, and analyzes boundary effects in kernel interpolation.
Findings
Superconvergence occurs in the interior with sufficient smoothness.
Boundary conditions influence superconvergence behavior.
Mercer eigenfunctions satisfy superconvergence conditions.
Abstract
It is well-known that univariate cubic spline interpolation, if carried out on point sets with fill distance , converges only like in for functions in if no additional assumptions are made. But superconvergence up to order occurs if more smoothness is assumed and if certain additional boundary conditions are satisfied. This phenomenon was generalized in 1999 to multivariate interpolation in Reproducing Kernel Hilbert Spaces on domains for continuous positive definite Fourier-transformable shift-invariant kernels on . But the sufficient condition for superconvergence given in 1999 still needs further analysis, because the interplay between smoothness and boundary conditions is not clear at all. Furthermore, if only additional smoothness is assumed, superconvergence is numerically observed in the interior of the…
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